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This presentation is about a research that have done earlier. It's an example of how to present the results and findings of a research at the end of a research.
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LUNG CANCER DETECTION SYSTEM USING NEURAL NETWORKS AND IMAGE PROCESSING
Presented By:
H.N.Gunasinghe
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CSC 364 1.5 Seminar IIDepartment of Computer Science and Statistics , USJP
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H.N.Gunasinghe
ACKNOWLEDGEMENT
This project was done By : K.A.G. Udeshani AS2006612
Supervisors : Dr. T.G.I. Fernando Dr. R.G.N. Meegama
Publication: Statistical Feature-based Neural Network
Approach for the Detection of Lung Cancer in Chest X-Ray Images
International Journal of Image Processing (IJIP), Volume (5) : Issue (4) : 2011 425 [link]
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OVERVIEW
Introduction Literature review Methodology Results and discussion Conclusion Summery
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INTRODUCTION
Lung cancer is a one of major cancers in Sri Lanka
Still a exact treatment is not found Early detection of is Lung cancer important
for a successful treatment. chest X-rays are considered to be the most
widely used technique for the detection of lung cancer.
It is a complex task to analyze these images as they are projected images.
A medical expert has to make extensive knowledge of anatomy and imaging techniques.
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X-Ray image
System
Nodule
Non- Nodule
PROBLEM STATEMENT Aim-
To develop a lung cancer detection system using chest X-Ray images as input
This is a Hybrid method-
System
Neural Networks
Feature extraction
Image processing
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WHAT IS A LUNG CANCER ?
Tumors arising from cells lining the airways of the respiratory system and it will expand into airways.
These cells are often in bright contrast in chest X-rays and take the shape of a round object.
Other diseases that can be seen in chest x-ray Pneumonia Tuberculosis Lung abscess
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OBJECTIVES
1. To develop a lung cancer detection system using Neural Network and Image Processing.
2. To generate more accurate results.3. To minimize the computational time to get
an output from the system.4. To help the people in Sri Lanka to Identify
lung cancer in early stages.
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MAJOR ACHIEVEMENTS
The system was successfully built using Neural Networks and image processing techniques
This system in cooperates an effective GUI with ease of interaction
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LITERATURE REVIEW
Digital photographs of chest X-rays and CT scans have been used to identify lung cancer.
Principles of neural networks have been widely used for the detection of lung cancer in medical images with simulated lung nodules [1, 2] massive training artificial neural networks[4] two level neural classifiers [5] hybrid lung nodule detection [6] ladder structured decision trees [3, 7]
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No Other researches Lung cancer detection system using Neural Network and Image Processing techniques
1 Computational effect is high
Computational effect is less, since considering only10 features.
2 Mainly focused on one approach
Two approaches were used. Pixel-based and feature-based detection with Image Processing techniques. View the suspicious areas of the lungs those can be lung nodules.
3 Use Neural Networks Use Neural Network with different architecture.
4 Not flexible This system is flexible and practical and may one can easily use this system for further improvements.
RESEARCH GAP
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RESEARCH QUESTIONS
Identify the lung cancer and what are the methods that can be used to design software solution.
How doctor identifies a lung cancer using a chest X-ray.
Identify suitable methods and Image Processing techniques to extract the features from a digital image of a chest X-ray.
The optional features that can be considered as the input to the Neural Network.
Identify how Neural Network using Matlab. Identify suitable method to design the optimum
architecture of a Neural Network. Identify the use of Graphical User Interface in
Matlab.
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METHODOLOGY (1)49
49
Features Pixels
Results
System Overview
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METHODOLOGY (2)-SYSTEM DESIGN- Median Filtering
Sharpening
Histogram Equalization
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METHODOLOGY (3)-FEATURE EXTRACTION-
Features extracted from an image1. Average gray level2. Uniformity3. Entropy4. Standard deviation 5. Skewness
Tackled noise removed by preprocessing image Most projects used integrated preprocessing
techniques to extract the lung region Extracted region was used to apply for further image processing techniques.
6. Smoothness
7. Contrast
8. Homogeneity
9. Energy
10. correlation
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This system uses a neural network with one hidden layer containing 1000 neurons, and an output layer with 1 neuron.
pixel-based intensity input vectors - purelin and tansig transfer functions
feature-based inputs vectors - two tansig transfer functions
METHODOLOGY (4) -NEURAL NETWORK - BACKPROPAGATION
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METHODOLOGY (5) – CONNECTED COMPONENT ANALYSIS
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original image median filtering Histogram equalization
Labeling connected components
binary threshold image
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RESULTS AND DISCUSSION (1)
Results obtained when testing for the accuracy of the system
Two main areas that has to be considered1. Neural network
a. Pixel based technique (2401 pixels)b. Feature based technique (10 features)
2. Connected component analysisa. View suspicious areasb. Calculate the roundness of the connected
components
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RESULTS AND DISCUSSION (2) – SELECT NN
pixel-based feature-based
Training graph of the neural network
R 1 0.737
MSE 1.2682e-009 0.2684
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RESULTS AND DISCUSSION (3) – RESULTS OF NN
managed to achieve a high recognition rate for a nodule when the neural network was trained using pixel-based intensity values.
Recognizing a non-nodule was 16% lower with statistical feature-based training of the neural network.
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RESULTS AND DISCUSSION (3) – FEATURE EXTRACTION -
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CONCLUSION This research was completed with good background
knowledge of lung cancer detection systems using computer intelligence
The detection rate of Feature based technique – 88% Pixel based technique – 96%
Successfully developed a solution using Neural Networks and image processing techniques with a GUI
A user has only to select the digital chest x ray as input and system will show suspicious areas of the chest x ray and the presence of lung nodules
It is considered only the visible area of the chest x – ray for the nodule detection
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ASSUMPTIONS AND LIMITATIONS
Low subtlety images were used Any algorithm wasn’t used to avoid rib
shadows
Try the system with many preprocessing techniques
Develop lung region segmentation algorithm to use with many databases.
Try with different NN architectures Develop algorithms to overcome rib
shadows. Apply these techniques to identify other
cancers AS2010379
FUTURE WORKS
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RESENT RESEARCHES
Soft Tool Development for Characterization of Lung Nodule from Chest X-ray Image International Journal of Image Processing and Vision
Sciences ISSN (Print): 2278 – 1110, Volume-2, Issue-1, 2012 [link]
Feature Extraction and Principal Component Analysis for Lung Cancer Detection in CT scan Images Ada et al., International Journal of Advanced Research
in Computer Science and Software Engineering 3(3), March - 2013, pp. 187-190 [link]
Oral cancer prognosis based on clinicopathologic
and genomic markers using a hybrid of feature
selection and machine learning methods Chang et al. BMC Bioinformatics 2013, 14:170 [link]
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REFERENCES [1] P.R. Snoeren, G.J.S. Litjens, B.V. Ginneken and N. Karssemeijer, Training a
computer aided detection system with simulated lung nodules in chest radiographs, Proc. 3rd International Workshop on Pulmonary Image Analysis, Beijing, 2010.
[2] G. Coppini, S. Diciotti, M. Falchini, N. Villari and G. Valli, Neural networks for computer aided diagnosis: detection of lung nodules in chest radiograms, IEEE Trans. On Information Technology in Biomedicine, vol. 4, pp. 344-357, 2003.
[3] M.G. Penedo, M.J. Carreira, A. Mosquera and D. Cabello, Computer aided diagnosis: A neural network based approach to lung nodule detection, IEEE Trans. on Medical Imaging, vol. 17, N 6. pp. 872-880, 1998.
[4] K. Suzuki, J. Shiraishi, H. Abe, H. MacMahon and K. Doi, False-positive reduction in computer-aided diagnostic scheme for detecting nodules in chest radiographs by means of massive training artificial neural network, Academi Radiology, vol. 12, N 2, pp. 191-201, 2003.
[5] J.S. Lin, S.B. Lo, A. Hasegawa, M.T. Freedman and S.K. Mun, Reduction of false positives in lung nodule detection using a two-level neural classification, IEEE Trans.
On Medical Imaging, vol. 15, pp. 206-216, 1996. [6] Y.S.P. Chiou, Y.M.F. Lure and P.A. Ligomenides, Neural networks image analysis
and classification in hybrid lung nodule detection (HLND) system, IEEE Workshop on Neural Networks for Signal Processing, pp. 517-526, 1993.
[7] D.H. Ballard and J. Sklansky, A ladder-structured decision tree for recognizing tumors in chest radiographs, IEEE Trans. on Computers, vol. C-25, pp. 503-513, 1976.
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THANK YOU
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